Cargando…

Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset

INTRODUCTION: Childhood vaccination is a cost-effective public health intervention to reduce child mortality and morbidity. But, vaccination coverage remains low, and previous similar studies have not focused on machine learning algorithms to predict childhood vaccination. Therefore, knowledge extra...

Descripción completa

Detalles Bibliográficos
Autores principales: Demsash, Addisalem Workie, Chereka, Alex Ayenew, Walle, Agmasie Damtew, Kassie, Sisay Yitayih, Bekele, Firomsa, Bekana, Teshome
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10584162/
https://www.ncbi.nlm.nih.gov/pubmed/37851705
http://dx.doi.org/10.1371/journal.pone.0288867
_version_ 1785122694265569280
author Demsash, Addisalem Workie
Chereka, Alex Ayenew
Walle, Agmasie Damtew
Kassie, Sisay Yitayih
Bekele, Firomsa
Bekana, Teshome
author_facet Demsash, Addisalem Workie
Chereka, Alex Ayenew
Walle, Agmasie Damtew
Kassie, Sisay Yitayih
Bekele, Firomsa
Bekana, Teshome
author_sort Demsash, Addisalem Workie
collection PubMed
description INTRODUCTION: Childhood vaccination is a cost-effective public health intervention to reduce child mortality and morbidity. But, vaccination coverage remains low, and previous similar studies have not focused on machine learning algorithms to predict childhood vaccination. Therefore, knowledge extraction, association rule formulation, and discovering insights from hidden patterns in vaccination data are limited. Therefore, this study aimed to predict childhood vaccination among children aged 12–23 months using the best machine learning algorithm. METHODS: A cross-sectional study design with a two-stage sampling technique was used. A total of 1617 samples of living children aged 12–23 months were used from the 2016 Ethiopian Demographic and Health Survey dataset. The data was pre-processed, and 70% and 30% of the observations were used for training, and evaluating the model, respectively. Eight machine learning algorithms were included for consideration of model building and comparison. All the included algorithms were evaluated using confusion matrix elements. The synthetic minority oversampling technique was used for imbalanced data management. Informational gain value was used to select important attributes to predict childhood vaccination. The If/ then logical association was used to generate rules based on relationships among attributes, and Weka version 3.8.6 software was used to perform all the prediction analyses. RESULTS: PART was the first best machine learning algorithm to predict childhood vaccination with 95.53% accuracy. J48, multilayer perceptron, and random forest models were the consecutively best machine learning algorithms to predict childhood vaccination with 89.24%, 87.20%, and 82.37% accuracy, respectively. ANC visits, institutional delivery, health facility visits, higher education, and being rich were the top five attributes to predict childhood vaccination. A total of seven rules were generated that could jointly determine the magnitude of childhood vaccination. Of these, if wealth status = 3 (Rich), adequate ANC visits = 1 (yes), and residency = 2 (Urban), then the probability of childhood vaccination would be 86.73%. CONCLUSIONS: The PART, J48, multilayer perceptron, and random forest algorithms were important algorithms for predicting childhood vaccination. The findings would provide insight into childhood vaccination and serve as a framework for further studies. Strengthening mothers’ ANC visits, institutional delivery, improving maternal education, and creating income opportunities for mothers could be important interventions to enhance childhood vaccination.
format Online
Article
Text
id pubmed-10584162
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Public Library of Science
record_format MEDLINE/PubMed
spelling pubmed-105841622023-10-19 Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset Demsash, Addisalem Workie Chereka, Alex Ayenew Walle, Agmasie Damtew Kassie, Sisay Yitayih Bekele, Firomsa Bekana, Teshome PLoS One Research Article INTRODUCTION: Childhood vaccination is a cost-effective public health intervention to reduce child mortality and morbidity. But, vaccination coverage remains low, and previous similar studies have not focused on machine learning algorithms to predict childhood vaccination. Therefore, knowledge extraction, association rule formulation, and discovering insights from hidden patterns in vaccination data are limited. Therefore, this study aimed to predict childhood vaccination among children aged 12–23 months using the best machine learning algorithm. METHODS: A cross-sectional study design with a two-stage sampling technique was used. A total of 1617 samples of living children aged 12–23 months were used from the 2016 Ethiopian Demographic and Health Survey dataset. The data was pre-processed, and 70% and 30% of the observations were used for training, and evaluating the model, respectively. Eight machine learning algorithms were included for consideration of model building and comparison. All the included algorithms were evaluated using confusion matrix elements. The synthetic minority oversampling technique was used for imbalanced data management. Informational gain value was used to select important attributes to predict childhood vaccination. The If/ then logical association was used to generate rules based on relationships among attributes, and Weka version 3.8.6 software was used to perform all the prediction analyses. RESULTS: PART was the first best machine learning algorithm to predict childhood vaccination with 95.53% accuracy. J48, multilayer perceptron, and random forest models were the consecutively best machine learning algorithms to predict childhood vaccination with 89.24%, 87.20%, and 82.37% accuracy, respectively. ANC visits, institutional delivery, health facility visits, higher education, and being rich were the top five attributes to predict childhood vaccination. A total of seven rules were generated that could jointly determine the magnitude of childhood vaccination. Of these, if wealth status = 3 (Rich), adequate ANC visits = 1 (yes), and residency = 2 (Urban), then the probability of childhood vaccination would be 86.73%. CONCLUSIONS: The PART, J48, multilayer perceptron, and random forest algorithms were important algorithms for predicting childhood vaccination. The findings would provide insight into childhood vaccination and serve as a framework for further studies. Strengthening mothers’ ANC visits, institutional delivery, improving maternal education, and creating income opportunities for mothers could be important interventions to enhance childhood vaccination. Public Library of Science 2023-10-18 /pmc/articles/PMC10584162/ /pubmed/37851705 http://dx.doi.org/10.1371/journal.pone.0288867 Text en © 2023 Demsash et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Demsash, Addisalem Workie
Chereka, Alex Ayenew
Walle, Agmasie Damtew
Kassie, Sisay Yitayih
Bekele, Firomsa
Bekana, Teshome
Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title_full Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title_fullStr Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title_full_unstemmed Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title_short Machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in Ethiopia: Evidence 2016 Ethiopian Demographic and Health Survey dataset
title_sort machine learning algorithms’ application to predict childhood vaccination among children aged 12–23 months in ethiopia: evidence 2016 ethiopian demographic and health survey dataset
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10584162/
https://www.ncbi.nlm.nih.gov/pubmed/37851705
http://dx.doi.org/10.1371/journal.pone.0288867
work_keys_str_mv AT demsashaddisalemworkie machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset
AT cherekaalexayenew machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset
AT walleagmasiedamtew machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset
AT kassiesisayyitayih machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset
AT bekelefiromsa machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset
AT bekanateshome machinelearningalgorithmsapplicationtopredictchildhoodvaccinationamongchildrenaged1223monthsinethiopiaevidence2016ethiopiandemographicandhealthsurveydataset